2. ABSTRACT:
Recommendation systems (RSs) have garnered immense interest for applications in
e-commerce and digital media. Traditional approaches in RSs include such as
collaborative filtering (CF) and content-based filtering (CBF) through these
approaches that have certain limitations, such as the necessity of prior user history
and habits for performing the task of recommendation. To minimize the effect of
such limitation, this article proposes a hybrid RS for the movies that leverage the
best of concepts used from CF and CBF along with sentiment analysis of tweets
from microblogging sites. The purpose to use movie tweets is to understand the
current trends, public sentiment, and user response of the movie. Experiments
conducted on the public database have yielded promising results.
3. EXISTING SYSTEM
Many RSs have been developed over the past decades. These systems use different approaches, such as CF, CBF,
hybrid, and sentiment analysis to recommend the preferred items.
These approaches are discussed as follows. A. Collaborative, Content-Based, and Hybrid Filtering Various RS
approaches have been proposed in the literature for recommending items.
The primordial use of CF was introduced in, which proposed a search system based on document contents and
responses collected from other users. Yang et al. inferred implicit ratings from the number of pages the users read.
The more pages read by the users, the more they are assumed to like the documents.
This concept is helpful to overcome the cold start problem in CF. Optimizing the RS is an ill-posed problem.
DISADVANTAGES:
The existing users not only receive information according to their social links but also gain access to other user-
generated information.
The necessity of prior user history and habits for performing the task of recommendation
4. PROPOSED SYSTEM:
The proposed system needs two types of databases. One is a user-rated movie database, where ratings for
relevant movies are present, and another is the user tweets from Twitter.
1) Public Databases: There are many popular public databases available, which have been widely used to
recommend the movies and other entertainment media. To incorporate the sentiment analysis in the proposed
framework, the tweets of movies were extracted from Twitter against the movies that were available in the
database. Experiments conducted using various public databases, such as the Movielens 100K,2 Movielens
20M.
2) Modified MovieTweetings Database: In the proposed work, the MovieTweetings database is modified to
implement the RS. The primary objective to modify the database was to use sentiment analysis of tweets by the
users, in the prediction of the movie RS. The MovieTweetings database contains the movies with published
years from 1894 to 2017. Due to the scarcity of tweets for old movies, we only considered the movies that were
released in or after the year 2014 and extracted a subset of the database which complied with our objective.
ADVANTAGES
1)To use movie tweets is to understand the current trends, public sentiment, and user response of the movie.
2)Experiments conducted on the public database have yielded promising results.
5. MODULES
1.Admin
In this module admin used to login, view all users and add sentiwords.
2.User
In this module user will register, login, search friends, requests, post, view all posts and Recommend
Movies.
6. SOFTWARE REQUIREMENTS:
• Technology : Java 2 Standard Edition, JDBC
• WebServer : Tomcat 7.0
• Client Side Technologies : HTML, CSS, JavaScript
• Server Side Technologies : Servlets, JSP
• Data Base Server : MySQL
• Editor : Netbeans 8.1
• Operating System : Microsoft Windows, Linux or Mac any version
7. HARDWARE REQUIREMENTS:
• System : Pentium IV 2.4 GHz.
• Hard Disk : 40 GB.
• Floppy Drive : 1.44 Mb.
• Monitor : 15 VGA Colour.
• Mouse : Logitech.
• Ram : 512 Mb.
18. CONCLUSION
RSs are an important medium of information filtering systems in the modern age,
where the enormous amount of data is readily available. In this article, we have
proposed a movie RS that uses sentiment analysis data from Twitter, along with
movie metadata and a social graph to recommend movies. Sentiment analysis
provides information about how the audience is respond to a particular movie and
how this information is observed to be useful. The proposed system used weighted
score fusion to improve the recommendations